Underwater Object Detection of AUV based on Sonar Simulator utilizing Noise Addition

Minsung Sung, Young-woon Song, Son-cheol Yu
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引用次数: 1

Abstract

Object detection is one of necessary techniques for autonomous underwater vehicles (AUVs) to automate their missions. However, underwater object detection requires a large number of data images of target object. This paper proposes a method to generate highly reliable training images through sonar simulator and background noise templates. Sonar simulator has been developed to generate ideal images of target by modeling imaging mechanism of sonar sensor. To make the image realistic, background noise acquired in the blank water tank are added to the simulated images. Finally, the AUV could detect the target objects at sea using a convolutional neural network trained with the generated images without any field data which is difficult to obtain.
基于声呐模拟器的AUV水下目标检测
目标检测是自主水下航行器实现任务自动化的必要技术之一。然而,水下目标检测需要大量目标物体的数据图像。本文提出了一种利用声纳模拟器和背景噪声模板生成高可靠性训练图像的方法。通过对声纳传感器成像机理的建模,研制了声纳模拟器来生成理想的目标图像。为了使图像逼真,在模拟图像中加入了在空白水箱中获取的背景噪声。最后,在不需要任何难以获得的现场数据的情况下,利用生成的图像训练卷积神经网络对海上目标物体进行检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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